US12218711B2 - Methods and devices for signal detection and channel estimation, and associated computer program - Google Patents
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- US12218711B2 US12218711B2 US18/026,984 US202118026984A US12218711B2 US 12218711 B2 US12218711 B2 US 12218711B2 US 202118026984 A US202118026984 A US 202118026984A US 12218711 B2 US12218711 B2 US 12218711B2
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04B—TRANSMISSION
- H04B17/00—Monitoring; Testing
- H04B17/30—Monitoring; Testing of propagation channels
- H04B17/309—Measuring or estimating channel quality parameters
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04B—TRANSMISSION
- H04B17/00—Monitoring; Testing
- H04B17/30—Monitoring; Testing of propagation channels
- H04B17/309—Measuring or estimating channel quality parameters
- H04B17/346—Noise values
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04B—TRANSMISSION
- H04B1/00—Details of transmission systems, not covered by a single one of groups H04B3/00 - H04B13/00; Details of transmission systems not characterised by the medium used for transmission
- H04B1/06—Receivers
- H04B1/16—Circuits
- H04B1/20—Circuits for coupling gramophone pick-up, recorder output, or microphone to receiver
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L1/00—Arrangements for detecting or preventing errors in the information received
- H04L1/20—Arrangements for detecting or preventing errors in the information received using signal quality detector
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L25/00—Baseband systems
- H04L25/02—Details ; arrangements for supplying electrical power along data transmission lines
- H04L25/0202—Channel estimation
- H04L25/0212—Channel estimation of impulse response
Definitions
- the present invention relates to the technical field of telecommunication.
- the present invention proposes a method for detecting a signal in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission through said communication channels, the propagation in said communication channels being characterized by at least one variable, the set of values that can be taken by said variable being divided into a plurality of ranges, said method comprising the steps of:
- the signal detection step is based on the use of a correlator that makes it possible to improve the detection performances in particular as regards the distinction with respect to the level of noise present. Moreover, this step is computationally inexpensive.
- the invention also relates to a method for channel estimation in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission through said communication channels, said method comprising the steps of:
- the invention also relates to a method for channel estimation in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission through said communication channels, said method comprising, as long as a stop condition is not obtained, the repetition of steps of:
- This channel estimation method has for advantage that it is based on calculations that have already been performed during the detection method introduced hereinabove. This also allows reducing the cost of execution of this estimation method.
- the invention also relates to a device for detecting a signal in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission through said communication channels, the propagation in said communication channels being characterized by at least one variable, the set of values that can be taken by said variable being divided into a plurality of ranges, said detection device comprising:
- the invention also relates to a device for channel estimation in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission through said communication channels, said channel estimation device comprising:
- the invention also relates to a device for channel estimation in a communication system comprising a plurality of communication channels, from a plurality of noisy values respectively representative of the transmission via said communication channels, said channel estimation device being designed to activate, as long as a stop condition is not obtained:
- the invention finally proposes a computer program comprising instructions executable by a processor and adapted to implement a method as proposed hereinabove when these instructions are executed by the processor.
- FIG. 1 shows a telecommunication system involved in the present invention
- FIG. 2 shows a channel estimation device for implementing a channel estimation method according to the invention
- FIG. 3 shows, as a flowchart, an example of channel estimation method according to the invention
- FIG. 4 shows, as a flowchart, an example of detection method as it can be implemented within the channel estimation method shown in FIG. 3 ,
- FIG. 5 shows, as a flowchart, an example of estimation method as it can be implemented within the channel estimation method shown in FIG. 3 ,
- FIG. 6 shows the evolution of a test function used within the estimation method shown in FIG. 5 .
- FIG. 7 shows the shape of a correlator according to the invention
- FIG. 8 shows the shape of a convolution kernel used within the estimation method shown in FIG. 5 .
- FIG. 9 shows the shape of a modified function obtained during the implementation of the estimation method shown in FIG. 5 .
- FIG. 1 shows a telecommunication system comprising a set of Nt transmitting antennas T 1 , . . . , T Nt and a set of Nr receiving antennas R 1 , . . . , R Nr .
- Each of the transmitting antennas T 1 , . . . , T Nt transmits electromagnetic signals (generally representing data to be transmitted, encoded by symbols) in an associated communication channel C, where these signals are received by the different receiving antennas R 1 , . . . , R Nr .
- the set of transmitting antennas T 1 , . . . , T Nt is a Uniform Linear Array (ULA).
- ULA Uniform Linear Array
- the transmission of the electromagnetic signals between the transmitting antennas T 1 , . . . , T Nt and the receiving antennas R 1 , . . . , R Nr is here physically modeled by a flat wave propagated (in direct line) along a defined direction between the centroid of the transmitting antennas T 1 , . . . , T Nt and the centroid of the receiving antennas R 1 , . . . , R Nr .
- MIMO Multiple-Input Multiple-Output
- the propagation of the signals in the communication channels can be characterized by an angle of departure ⁇ tx , an angle of arrival ⁇ rx , and a delay of propagation T between the plurality of transmitting antennas T 1 , . . . , T Nt and the plurality of receiving antennas R 1 , . . . , R Nr .
- the present invention takes place in a context of multi-path communication channel (for example, here, P paths) between the transmitting antennas T 1 , . . . , T Nt and the receiving antennas R 1 , . . . , R Nr .
- P paths for example, here, P paths
- the communication channel C is modeled by the vector h expressed as:
- the vector h modeling the propagation channel is expressed as:
- the propagation channels are hence characterized using these three variables.
- the object of the present invention is to determine them.
- the following disclosure describes the determination of one of these variables, for example, the angle of departure ⁇ tx , by considering a modeling according to only one of the three variables.
- a two-variable or three-variable modeling can be used.
- FIG. 2 functionally illustrates a channel estimation device 1 according to an exemplary embodiment of the invention.
- This channel estimation device 1 comprises a control unit 2 .
- the control unit 2 also comprises a detection device 5 and an estimation device 7 .
- the control unit 2 comprises a processor 20 and a memory 22 .
- the detection device 5 and the estimation device 7 are formed by a set of functional modules.
- the detection device 5 comprises a signal reception module and a signal detection module.
- the estimation device 7 comprises the detection device 5 and an estimation module.
- Each of the different modules described is for example implemented by means of computer program instructions adapted to implement the module in question when these instructions are executed by the processor of the control unit 2 .
- the memory of the control unit 2 is for example adapted to memorize for example pilot signals, here linear signals, used to test the communication channels.
- FIG. 3 is a flowchart showing an example of channel estimation method that can be implemented in the context described hereinabove.
- the channel estimation method starts with step E 2 , during which the transmitting antennas T 1 , . . . , T Nt transmit electromagnetic signals X t to the receiving antennas R 1 , . . . , R Nr .
- the signals y are received by the receiving antennas R 1 , . . . , R Nr . These signals are transmitted in the plurality of communication channels. These received signals y are given by the expression introduced hereinabove.
- noisy values z will serve as a base for determining the value t associated with the angle of departure ⁇ tx .
- the propagation of the signals in the communication channels is characterized by the variable t associated with the angle of departure ⁇ tx , the variable r associated with the angle of arrival ⁇ rx and the propagation delay T.
- the channel estimation method then comprises steps of estimating the values of these variables.
- the steps presented describe the determination of the value taken by one of these variables (here the variable t associated with the angle of departure ⁇ tx ).
- a signal To characterize the propagation of the signals in the communication channel, a signal must first be detected in the communication system.
- the channel estimation method then comprises a detection method Det of a signal in the communication system.
- FIG. 4 is a flowchart showing an example of a detection method as it can be implemented within the channel estimation method according to the invention.
- the detection method comprises a step of dividing the range of values that can be taken by the value t into a plurality of sub-ranges, for example K t sub-ranges j.
- the value t associated with the angle of departure ⁇ x is between ⁇ 1 and 1.
- the range [ ⁇ 1, 1] is thus divided into a succession of sub-ranges in such a way as to cover the whole range [ ⁇ 1, 1].
- the number Kt is for example predetermined, before execution of the detection method, for example as a function of a desired level of performance.
- the following of the detection method then consists in testing the presence of a signal on each of the sub-ranges constituting the range of values that can be taken by the value t associated with the angle of departure ⁇ tx .
- the processor of the detection device determines, for each sub-range j, a so-called “correlator” function f(res i , j).
- this correlator can be interpreted as a spatial filter associated with the sub-range in question, making it possible to filter the signals in order for example to distinguish them from the noise on this sub-range j.
- each correlator is defined as a sum of windowed correlator functions associated with the sub-range in question. In this case, it is defined by the following expression:
- the scalars ⁇ k and the vectors r tx,k correspond respectively to the eigenvalues and eigenvectors associated with the matrix R 0 defined by the expression:
- the eigenvalues ⁇ k and the eigenvectors r tx,k depend only on the width ⁇ t of the sub-range j in question.
- the eigenvalues ⁇ k decrease towards 0.
- step E 14 the detection method then continues with step E 14 .
- the correlators observe a maximum when the current residue res i is collinear to the steering vector e t associated with the direction corresponding to the center t j of the sub-range j in question.
- the processor of the detection device identifies the sub-range corresponding to the maximum likelihood of the correlator determined at step E 12 . More precisely, the control unit 2 determines the maximum value reached by the correlators among the correlators determined for each sub-range j.
- the processor of the detection device compares this determined maximum value with a predetermined threshold.
- This predetermined threshold is function of a level of noise associated with the studied range. It is for example here a Gaussian noise distributed in all the directions.
- the processor of the detection device therefore here compares with the predetermined threshold the maximum value among each of the correlator values calculated according to the first embodiment introduced earlier.
- the processor of the detection device compares, with the predetermined threshold, the maximum sum of windowed correlator functions determined among the different correlator function sums determined for each sub-range j.
- control unit 2 identifies the sub-range on which the power of the transmitted signal is the highest and such that this signal cannot be considered as noise.
- the processor of the detection device identifies the sub-range containing the searched value t of the angle of departure (step E 16 ). We hence consider here that a signal has been detected in the communication system.
- the channel estimation method then continues with step E 20 .
- the control unit 2 receives from the detection device the information about the detection of a signal in the communication system.
- the channel estimation method then comprises an estimation method Est (described hereinafter and shown in FIG. 5 ) for estimating the value associated with the variable characterizing the propagation of the signals in the communication channel; more particularly here, the estimation method relates to the estimation of the value t associated with the angle of departure ⁇ tx relating to the detected signal.
- step E 14 If, at step E 14 , the maximum of likelihood of the correlator is lower than the predetermined threshold, it is considered that no signal has been detected.
- the control unit 2 receives the information that no signal has been detected by the detection device.
- the channel estimation method then continues with step E 22 . This absence of detection here forms a stop condition.
- the communication channel is characterized on the basis of the set of signals previously detected at the current index i.
- the vector h is then defined by the following expression:
- another stop condition can be defined, for example by determining the norm of the residue and by identifying when the latter is lower than a predefined threshold.
- FIG. 5 is a flowchart showing an example of estimation method as it can be implemented within the channel estimation method.
- the estimation method Est starts at step E 30 .
- the method of the estimation device determines, from the sub-range identified at step E 14 of the detection method, a first estimation t 0 of the value t of the angle of departure ⁇ tx .
- this first estimation t 0 corresponds to the center t j of the identified sub-range.
- Another embodiment is based on the values of the windowed correlators determined on the identified sub-range. More particularly, the first estimation t 0 of the value t of the angle of departure ⁇ tx is based on a test function f t determined on each sub-range j and depending of the windowed correlators previously determined:
- the determination of the first estimation t 0 is then based on a comparison of the windowed correlators associated with the sub-range j identified at step E 14 , hence corresponding to the signal detected during the detection method Det.
- FIG. 6 shows the evolution of this test function f t as a function of the different values possible for the value t of the angle of departure ⁇ tx .
- the curve f corresponds to this test function, taking into account all the windowed correlators.
- the curve a corresponds to the contribution of the first windowed correlator to the function f t .
- the curve b corresponds to the contribution of the second windowed correlator to the function f t .
- each windowed correlator in the test function f t (res i , j). Studying each of these contributions of each windowed correlator thus makes it possible to evaluate the first estimation t 0 of the value t of the angle of departure ⁇ tx .
- the phase difference associated with each windowed correlator makes it possible to locate the portion of the sub-range that contains the searched value t (for example, on the left or the right of the sub-range center).
- the amplitude of each windowed correlator makes it possible to identify the position of the searched value t in the sub-range in question.
- this first estimation t 0 of the value t associated with the angle of departure ⁇ tx corresponds to an approximate estimation of this value.
- the following steps of the estimation method therefore have for object to refine this first estimation t 0 .
- a conventional solution consists in using optimizing methods such as the Newton-Raphson method or the gradient descent.
- optimizing methods such as the Newton-Raphson method or the gradient descent.
- these methods are based on the use of functions having properties of convexity.
- step E 32 the processor of the estimation device determines a modified function f mod_i .
- This modified function f mod_i is determined on the basis of a scalar product between the vector associated with the noisy values and the steering vector. More precisely, here, the vector associated with the noisy values z here corresponds to the vector associated with the current value of the residue res i .
- the modified function f mod_i has properties of convexity, that is to say that this modified function f mod_i is either convex, or concave. These properties will hence allow implementing the conventional optimization methods.
- this modified function f mod_i reaches a maximum value for the value t corresponding to the maximum of the initial correlator (that is to say the non-modified shape).
- this modified function f mod_i amounts to determine the result of a convolution operation between the correlator
- This convolution kernel f n here has for example the shape of a section of parabola ( FIG. 8 ).
- the modified function f mod_i to which will be applied the optimization method, here depends on a sum of windowed correlators (as introduced during the detection method):
- FIG. 9 represents the variation of this modified function f mod_i as a function of the different possible values of the variable t.
- the modified function f mod_i here has the shape of a parabola centered on the value t associated with the searched angle of departure.
- a conventional optimization method is hence applied to this modified function f mod_i .
- the Newton-Raphson method is here applied, decomposed into the following steps E 34 to E 44 .
- the object of this method is to determine the position of the maximum of the modified function f mod_i .
- the estimation method Est continues with step E 34 of initializing an index l to the value 0.
- This index l denotes the current run of this optimization method.
- the control unit 2 also initializes the value of a variable t l .
- the first estimation t 0 determined at step E 30 is used as the initialization value.
- the processor of the estimation device determines, for the current run, the values of the first and second derivatives of the modified function f mod_i as the value of the current variable t l . In other words, using the conventional notations, the processor of the estimation device determines the values f mod_i ′ (z, t l ) and f mod_i ′′(z, t l ).
- step E 38 the processor of the estimation device determines the value of the variable t l+1 defined by the following expression:
- step E 40 the processor of the estimation device evaluates if the determined value t l+1 corresponds to the maximum of the modified function f mod_i .
- the processor calculates the quantity [t l+1 ⁇ t l ]. If this quantity is higher than a predetermined value ⁇ (
- step E 42 the value t l is actualized by the value t l+1 determined at step E 38 .
- the index l is also incremented.
- a new iteration is then implemented and the method restarts at step E 36 .
- the determined value t l+1 can be considered as representing the value of the maximum of the modified function f mod_i (step E 44 ).
- this value t l+1 corresponds to a finer estimation of the value t associated with the searched angle of departure ⁇ tx .
- T p the value associated with the angle of departure, obtained at this step.
- step E 50 the channel estimation method then continues with step E 50 ( FIG. 3 ).
- This parameter ⁇ p,i is here recalculated at each iteration of the method for all the values p lower than or equal to the current index i.
- the signal detected is then fully characterized and the method is continued by actualizing the value of the residue res i previously introduced (step E 52 ) to take into account the last signal detected and the estimation associated with the corresponding angle of departure.
- the signal, among the signals remaining in the residue, whose power was the highest, is deduced from the noisy values z to obtain a new residue res i+1 :
- the new residue res i+1 is completely recalculated from the noisy values z at each iteration because the gain estimations ⁇ p,i are actualized at each iteration.
- the index i is then incremented at step E 54 and the method then restarts before the detection method Det, as long as the stop condition defined at step E 20 is not obtained.
- These estimated values can also be used by the control unit 2 to configure circuits for processing the electromagnetic signals received by the antennas R 1 , . . . , R Nr of the array of antennas (these processing circuits being included in the control unit 2 but not shown so as to simplify the disclosure). These estimated values can also be estimated to configure pre-encoders adapted to perform a pre-encoding of the electromagnetic signals to be transmitted by means of the antennas R 1 , . . . , R Nr of the array of antennas (when these antennas also operate in transmission as mentioned hereinabove).
- the direction of departure belongs to the range [ ⁇ 1, 1]. This range is divided into a succession of sub-ranges. The probability of presence of the ray in each sub-range is tested. The probability of presence of the ray in the range
- the ray presence probability can be written:
- g ⁇ ( t ) ⁇ 1 ⁇ if ⁇ t ⁇ [ - ⁇ ⁇ t 2 , ⁇ ⁇ t 2 ] 0 ⁇ else we have:
- the matrix R 0 can be decomposed into eigenvectors and eigenvalues as follows:
- the sub-range the most liable to contain the ray is then sought. This operation amounts to retain the sub-range having shown the maximum probability. For that purpose, the complete calculation of P j is not necessary, it is sufficient to calculate f i (z, j), the variable part of P j . The value reached by f(z, j) in the sub-range retained is tested with respect to a threshold. The decision of the detection method is given by the test result.
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Abstract
Description
-
- receiving signals respectively transmitted in the plurality of communication channels, and
- detecting a signal corresponding to a value of said variable included in one range among the plurality of ranges by comparing, with a predetermined threshold, a value taken by a correlator linked to the range in question and calculated as a function of the noisy values.
-
- the detection step comprises a step of comparing, with said predetermined threshold, a maximum value among a plurality of values taken by the correlator;
- the detection step comprises a step of determining, for each range, a sum of windowed correlator functions associated with the range in question and depending upon said noisy values;
- the detection step comprises a step of comparing the sum of windowed correlator functions with said predetermined threshold; and
- the predetermined threshold depends upon a level of noise associated with the range in question.
-
- detecting a signal by implementing a detection method as defined hereinabove, and
- estimating the value of the variable in the range including the value of said variable corresponding to the detected signal.
-
- detecting a signal by implementing a detection method as defined hereinabove, and
- estimating the value of the variable in the range including the value of said variable corresponding to the detected signal,
said stop condition corresponding to the absence of detection of a signal when the detection method as defined hereinabove is implemented.
-
- the estimation step comprises a step of determining an intermediate value of said variable as equal to the center of the range including the value of said variable corresponding to the detected signal;
- the estimation step comprises a step of determining an intermediate value of said variable by comparing windowed correlators corresponding to the range including the value of said variable corresponding to the detected signal;
- the estimation step further comprises a step of determining a function having a property of convexity associated with a scalar product of a vector formed of the noisy values and a steering vector depending upon said variable, the maximum of said function having a property of convexity and the maximum of said scalar product being obtained for the same value of said variable; and
- said value of the variable is determined by an optimization step on the basis of said intermediate value of the variable and using said function having a property of convexity.
-
- a module for receiving the signals respectively transmitted in the plurality of communication channels, and
- a module for detecting a signal corresponding to a value of said variable included in one range among the plurality of ranges by comparing, with a predetermined threshold, a value taken by a correlator linked to the range in question and calculated as a function of the noisy values.
-
- a device for detecting a signal as defined hereinabove, and
- a module for estimating the value of the variable in the range including the value of said variable corresponding to the detected signal.
-
- a detection device for detecting a signal by implementation of a detection method as defined hereinabove, and
- a module for estimating the value of the variable in the range including the value of said variable corresponding to the detected signal, said stop condition corresponding to the absence of detection of a signal by the detection device as defined hereinabove.
y=X t T h+n
-
- with Xt the vector of the transmitted signals, θtx the angle of departure, n a vector characterizing a thermal noise and the notation T corresponding to the matrix transposition operator.
-
- where et is the steering vector characteristic of the antenna array, βp the gain of the electromagnetic signals and tp the variable defined by tp=cos (θtx).
-
- with et, er and ef the steering vectors associated with the directions t, r and T, respectively, the variables t=cos (θtx), r=cos (θrx), T the delay of propagation and ⊗ the Kronecker product.
z=X t T y
-
- with the notation T corresponding to the matrix transposition operator.
f(res i ,j)=|e t T(t j)·res i|2
-
- with tj the center of the sub-range in question, et the steering vector associated with the direction corresponding to the center tj of the sub-range in question, resi the current value of the residue.
-
- with et the steering vector associated with the direction t, tj the center of the sub-range in question, resi the current value of the residue, λk scalars and rtx,k vectors and the notation ⊙ an operator symbolizing the term-by-term product between the different elements of the vectors in question (also called Hadamard product).
-
- with Δt the width of the sub-range in question, ∥atx∥ the distance between two transmitting antennas, λ the wavelength of the transmitted signals and the notation sinc corresponding to the sinc function defined by sinc(x)=sin(x)/x.
|e t T(t j)·(r tx,k ⊙res i)|2
-
- is herein called “windowed correlator function”.
-
- with βp,i the gain estimation of the electromagnetic signals associated with the estimation Tp of the value t obtained during the previous iteration of the method (preceding the current index i). We hence have here P=i−1. Each parameter βp,i has hence been obtained during the previous iterations.
f(res i ,t)=|e t T(t)·res i|2
-
- has a behavior similar to a Dirac function near its maximum (
FIG. 7 ). Conventional optimization methods are not suitable for processing this type of function. It is hence necessary in a first time to modify the correlator so as to then be able to apply thereto the conventional optimization methods.
- has a behavior similar to a Dirac function near its maximum (
-
- with λk scalars and rtx,k vectors depending of the chosen convolution kernel fn.
y=X t T h+n with h=β·e t*(t).
is given by:
z=X t H y
-
- where |a| represents the distance between two antennas and λ represents the wavelength associated with the frequency of the carrier used. It can be observed that the integral involves the Fourier transform of the kernel function g(t), called
where
Δ(
and
we have:
f(z,j)=z HΔH(t j)R 0Δ(t j)z
-
- be the part depending on z of the probability of presence of the ray in the range j.
-
- so that the function fi(z, j) can be written as
Claims (19)
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| FR2009577A FR3114464B1 (en) | 2020-09-22 | 2020-09-22 | Methods and devices for signal detection and channel estimation, and associated computer program |
| PCT/EP2021/075966 WO2022063789A1 (en) | 2020-09-22 | 2021-09-21 | Methods and devices for signal detection and channel estimation, and associated computer program |
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-
2021
- 2021-09-21 US US18/026,984 patent/US12218711B2/en active Active
- 2021-09-21 WO PCT/EP2021/075966 patent/WO2022063789A1/en not_active Ceased
- 2021-09-21 EP EP21782692.4A patent/EP4218163A1/en active Pending
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| US20040078196A1 (en) | 2001-10-22 | 2004-04-22 | Mototsugu Abe | Signal processing method and processor |
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| FR3114464B1 (en) | 2023-01-27 |
| FR3114464A1 (en) | 2022-03-25 |
| EP4218163A1 (en) | 2023-08-02 |
| US20230344531A1 (en) | 2023-10-26 |
| WO2022063789A1 (en) | 2022-03-31 |
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